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首页> 外文期刊>Journal of Econometrics >Subsampling vector autoregressive tests of lineal constraints
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Subsampling vector autoregressive tests of lineal constraints

机译:线性约束的二次采样向量自回归检验

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This paper studies subsampling VAR tests of linear constraints as a way of finding approximations of their finite sample distributions that are valid legardless of the stochastic nature of the data generating processes for the tests. In computing theVAR tests with subsamples (i.e., blocks of consecutive time series), both the tests of the original form and the tests with the subsample OLS coefficient estimates centered at the full-sample estimates are used Subsampling using the latter is called centered subsampling in this paper. It is shown that the subsamplings provide asymptotic distributions that are equivalent to the asymptotic distributions of the VAR tests. In addition, the tests using critical values from the subsamplings are shown to be consistent. The subsampling methods are applied to testing for causality. To choose the block sizes for subsample causality tests, the minimum volatility method, a new simulation-based calibration rale and a bootstrap-based calibration rule are used Simulation results in this paper indicate that the centered subsampling using the simulation-based calibration rule for the block size is quite promising. It delivers stable empirical size and reasonably high-powered causality tests, Moreover, when the causality test has a chi-square distribution in the limit, the test using critical values fiom the centered subsampling has better size properties than the one using chi-square critical values. The centered subsampling using the bootstrap-based calibration rulefor the block size also works well, but it is slightly inferior to that using the simulation-based calibration rule.
机译:本文研究线性约束的二次抽样VAR测试,以此作为寻找有限样本分布近似值的一种方法,这种方法对于不受测试数据生成过程随机性影响的情况都是有效的。在使用子样本(即,连续时间序列的块)计算VAR测试时,会使用原始形式的测试和以全样本估计为中心的子样本OLS系数估计的测试,将后者称为“子集中采样”。这篇报告。结果表明,子采样提供的渐近分布与VAR测试的渐近分布等效。另外,使用来自子采样的临界值的测试也显示出一致性。二次抽样方法适用于因果关系测试。为了选择子样本因果关系检验的块大小,使用了最小波动率方法,新的基于模拟的校准规则和基于自举的校准规则。本文的模拟结果表明,使用基于模拟的校准规则对样本进行居中二次采样块大小很有希望。它提供了稳定的经验大小和合理的高因果关系测试,此外,当因果关系测试在极限中具有卡方分布时,使用中心抽样的临界值进行的测试要比使用卡方临界的方法具有更好的大小属性。价值观。对于块大小,使用基于引导程序的校准规则进行居中二次采样也可以很好地工作,但与基于仿真的校准规则相比,它稍逊一筹。

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